Institute of Cancer and Genomics Sciences, University of Birmingham, Birmingham, United Kingdom.
Birmingham Children's Hospital, Birmingham, United Kingdom.
Magn Reson Med. 2018 Apr;79(4):2359-2366. doi: 10.1002/mrm.26837. Epub 2017 Aug 8.
3T magnetic resonance scanners have boosted clinical application of H-MR spectroscopy (MRS) by offering an improved signal-to-noise ratio and increased spectral resolution, thereby identifying more metabolites and extending the range of metabolic information. Spectroscopic data from clinical 1.5T MR scanners has been shown to discriminate between pediatric brain tumors by applying machine learning techniques to further aid diagnosis. The purpose of this multi-center study was to investigate the discriminative potential of metabolite profiles obtained from 3T scanners in classifying pediatric brain tumors.
A total of 41 pediatric patients with brain tumors (17 medulloblastomas, 20 pilocytic astrocytomas, and 4 ependymomas) were scanned across four different hospitals. Raw spectroscopy data were processed using TARQUIN. Borderline synthetic minority oversampling technique was used to correct for the data skewness. Different classifiers were trained using linear discriminative analysis, support vector machine, and random forest techniques.
Support vector machine had the highest balanced accuracy for discriminating the three tumor types. The balanced accuracy achieved was higher than the balanced accuracy previously reported for similar multi-center dataset from 1.5T magnets with echo time 20 to 32 ms alone.
This study showed that 3T MRS can detect key differences in metabolite profiles for the main types of childhood tumors. Magn Reson Med 79:2359-2366, 2018. © 2017 International Society for Magnetic Resonance in Medicine.
3T 磁共振扫描仪通过提供更高的信噪比和更高的光谱分辨率,提高了 H-MR 光谱(MRS)的临床应用,从而识别出更多的代谢物,并扩展了代谢信息的范围。已经表明,通过应用机器学习技术对临床 1.5T 磁共振扫描仪的光谱数据进行分析,可以区分小儿脑肿瘤。本多中心研究的目的是研究从 3T 扫描仪获得的代谢物谱在分类小儿脑肿瘤方面的鉴别潜力。
共对 41 名患有脑肿瘤的儿科患者(17 名髓母细胞瘤、20 名毛细胞星形细胞瘤和 4 名室管膜瘤)进行扫描,涉及四个不同的医院。使用 TARQUIN 对原始光谱数据进行处理。使用边界合成少数超采样技术纠正数据的偏度。使用线性判别分析、支持向量机和随机森林技术对不同的分类器进行训练。
支持向量机在区分三种肿瘤类型方面具有最高的平衡准确性。所达到的平衡准确性高于以前使用类似的多中心数据集,来自 1.5T 磁体,单独使用 20 到 32 毫秒的回波时间,报道的平衡准确性。
本研究表明,3T MRS 可以检测儿童肿瘤主要类型的代谢物谱中的关键差异。磁共振医学 79:2359-2366,2018. © 2017 国际磁共振学会。